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A Rule-based Method Applied to the Imbalanced Classification of Radiation Toxicity

机译:基于规则的辐射毒性分类的基于规则的方法

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This paper describes a rule-based classifier (DEQAR-C), which is set up by the combination of selected rules after a two-phase process. In the first phase, the rules are generated and sorted for each class, and then a selection is performed to obtain a final list of rules. A real imbalanced dataset regarding the toxicity during and after radiation therapy for prostate cancer has been employed in a comparison with other predictive methods (rule-based, artificial neural networks, trees, Bayesian and logistic regression). DEQAR-C produced excellent results in an evaluation regarding several performance measures (accuracy, Matthews correlation coefficient, sensitivity, specificity, precision, recall and F-measure) and by using cross-validation. Therefore, it was employed to obtain a predictive model using the full data. The resultant model is easily interpretable, combining three rules with two variables, and suggesting conditions that are mostly confirmed by the medical literature.
机译:本文介绍了一种基于规则的分类器(DEQAR-C),其由两阶段过程之后由所选规则的组合设置。在第一阶段中,为每个类生成和对规则进行排序,然后执行选择以获得最终规则列表。与其他预测方法(基于规则的,人工神经网络,树木,贝叶斯和逻辑回归)相比,已经使用了关于前列腺癌的毒性期间和后的毒性的真实不平衡数据集。 Deqar-C在评估方面产生了优异的结果,有关几种性能措施(准确性,Matthews相关系数,灵敏度,特异性,精度,召回和F测量)以及使用交叉验证。因此,使用完整数据获得预测模型。得到的模型很容易解释,将三种规则与两个变量组合,并建议由医学文献确认的条件。

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